## Ignorer les outliers relatifs à l'utilisation de l'échelle de confiance :  TRUE
## Résultats basés sur la l'échelle de confiance :  TRUE
## Nombre de participants à l'expérimentation :  58
## Nombre de participants se déclarant comme joueurs :  29
## Nombre de femmes se déclarant comme joueuses :  3
## Age médian des joueurs :  15

Removing Outliers

## [1] "Outliers BET STANDARD DEVIATION: 3qq8dp8jk, 79pn8m6v8, e58u3sinl, urgv6o806"

## Empty data.table (0 rows) of 1 col: IDjoueur

## Empty data.table (0 rows) of 1 col: IDjoueur

## Empty data.table (0 rows) of 1 col: IDjoueur

## [1] "Outliers BET SAVED SHEEPS: "
## Empty data.table (0 rows) of 1 col: IDjoueur
## Empty data.table (0 rows) of 1 col: IDjoueur
## Empty data.table (0 rows) of 1 col: IDjoueur

## [1] "Outliers CS STANDARD DEVIATION: 3qq8dp8jk, 79pn8m6v8, e58u3sinl, urgv6o806, 9b3ph38yc, 9b3ph38yc, a6dfu5ljd, a6dfu5ljd, bzrji9dqz, dyg7cga2o, dyg7cga2o, ejodnl05c, kctu3te1y, tmxmxmwhi, zp9bc59o5, zv35u39vc"

## Empty data.table (0 rows) of 1 col: IDjoueur

## [1] "Outliers CS NULL: 3qq8dp8jk, 79pn8m6v8, e58u3sinl, urgv6o806, 9b3ph38yc, 9b3ph38yc, 9b3ph38yc, a6dfu5ljd, a6dfu5ljd, a6dfu5ljd, bzrji9dqz, bzrji9dqz, dyg7cga2o, dyg7cga2o, dyg7cga2o, ejodnl05c, kctu3te1y, kctu3te1y, m4ye7uz5h, qzh5zi9e8, tmxmxmwhi, tmxmxmwhi, zp9bc59o5, zp9bc59o5, zv35u39vc"

## Empty data.table (0 rows) of 1 col: IDjoueur
## [1] "Total number of participants :  58"
## [1] "Total number of outliers:  15"
## [1] "- total number of outliers motor task:  11"
## [1] "- total number of outliers perceptive task:  6"
## [1] "- total number of outliers logical task:  8"
## [1] "Total number of participants after removing outliers:  55"
## [1] "- motor:  47"
## [1] "- perceptive:  50"
## [1] "- logical:  52"

Modeling difficulty

Modeling objective difficulty for motor task

## Generalized linear mixed model fit by maximum likelihood (Laplace
##   Approximation) [glmerMod]
##  Family: binomial  ( logit )
## Formula: perdant ~ difficulty + timeNorm + (1 | IDjoueur)
##    Data: DT
## 
##      AIC      BIC   logLik deviance df.resid 
##   1669.2   1690.0   -830.6   1661.2     1359 
## 
## Scaled residuals: 
##     Min      1Q  Median      3Q     Max 
## -3.8343 -0.7720  0.3062  0.7571  2.7501 
## 
## Random effects:
##  Groups   Name        Variance Std.Dev.
##  IDjoueur (Intercept) 0.4686   0.6846  
## Number of obs: 1363, groups:  IDjoueur, 47
## 
## Fixed effects:
##             Estimate Std. Error z value Pr(>|z|)    
## (Intercept)  -0.9982     0.1974  -5.057 4.27e-07 ***
## difficulty    2.8413     0.2301  12.346  < 2e-16 ***
## timeNorm     -0.5530     0.2179  -2.538   0.0112 *  
## ---
## Signif. codes:  0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
## 
## Correlation of Fixed Effects:
##            (Intr) dffclt
## difficulty -0.549       
## timeNorm   -0.577 -0.022
## The result is correct only if all data used by the model has not changed since model was fitted.
## The result is correct only if all data used by the model has not changed since model was fitted.
## 
##  Logique2   Motrice Sensoriel 
##         0      1363         0 
## [1] "Player levels from ranef:"
##   (Intercept)      
##  Min.   :-0.96344  
##  1st Qu.:-0.37670  
##  Median :-0.08364  
##  Mean   :-0.00173  
##  3rd Qu.: 0.21652  
##  Max.   : 1.57591  
## [1] "Intercept: -0.998 4.3e-07 ***"
## [1] "Difficulty: 2.84 5.1e-35 ***"
## [1] "Time: -0.553 0.011 *"
## [1] "R2 fixed: 0.16"
## [1] "R2 mixed: 0.26"
## [1] "Cross Val: 0.67"
## [1] "AIC: 1700"
##          0%         25%         50%         75%        100% 
## -1.57590869 -0.21652213  0.08364306  0.37669604  0.96343671

##          0%         25%         50%         75%        100% 
## -1.57590869 -0.21652213  0.08364306  0.37669604  0.96343671

## `geom_smooth()` using method = 'gam'

## `geom_smooth()` using method = 'loess'

## `geom_smooth()` using method = 'loess'

## `geom_smooth()` using method = 'loess'

Modeling objective difficulty for sensory task

## Generalized linear mixed model fit by maximum likelihood (Laplace
##   Approximation) [glmerMod]
##  Family: binomial  ( logit )
## Formula: perdant ~ difficulty + timeNorm + (1 | IDjoueur)
##    Data: DT
## 
##      AIC      BIC   logLik deviance df.resid 
##   1123.8   1144.9   -557.9   1115.8     1446 
## 
## Scaled residuals: 
##     Min      1Q  Median      3Q     Max 
## -6.3468 -0.3664  0.1130  0.3424  6.3198 
## 
## Random effects:
##  Groups   Name        Variance Std.Dev.
##  IDjoueur (Intercept) 0.788    0.8877  
## Number of obs: 1450, groups:  IDjoueur, 50
## 
## Fixed effects:
##             Estimate Std. Error z value Pr(>|z|)    
## (Intercept)  -3.1933     0.2727 -11.710   <2e-16 ***
## difficulty    8.1870     0.4266  19.192   <2e-16 ***
## timeNorm     -0.4773     0.2844  -1.679   0.0932 .  
## ---
## Signif. codes:  0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
## 
## Correlation of Fixed Effects:
##            (Intr) dffclt
## difficulty -0.633       
## timeNorm   -0.506 -0.072
## Warning in checkConv(attr(opt, "derivs"), opt$par, ctrl = control
## $checkConv, : Model failed to converge with max|grad| = 0.0241954 (tol =
## 0.001, component 1)
## Warning in checkConv(attr(opt, "derivs"), opt$par, ctrl = control$checkConv, : Model is nearly unidentifiable: very large eigenvalue
##  - Rescale variables?
## The result is correct only if all data used by the model has not changed since model was fitted.
## Warning in checkConv(attr(opt, "derivs"), opt$par, ctrl = control$checkConv, : Model failed to converge with max|grad| = 0.0241954 (tol = 0.001, component 1)

## Warning in checkConv(attr(opt, "derivs"), opt$par, ctrl = control$checkConv, : Model is nearly unidentifiable: very large eigenvalue
##  - Rescale variables?
## The result is correct only if all data used by the model has not changed since model was fitted.
## 
##  Logique2   Motrice Sensoriel 
##         0         0      1450 
## [1] "Player levels from ranef:"
##   (Intercept)        
##  Min.   :-1.7107216  
##  1st Qu.:-0.4707794  
##  Median : 0.0814227  
##  Mean   :-0.0009546  
##  3rd Qu.: 0.4563319  
##  Max.   : 1.5481412  
## [1] "Intercept: -3.19 1.1e-31 ***"
## [1] "Difficulty: 8.19 4.3e-82 ***"
## [1] "Time: -0.477 0.093 ."
## [1] "R2 fixed: 0.32"
## [1] "R2 mixed: 0.46"
## [1] "Cross Val: 0.82"
## [1] "AIC: 1100"
##          0%         25%         50%         75%        100% 
## -1.54814123 -0.45633191 -0.08142269  0.47077942  1.71072162

##          0%         25%         50%         75%        100% 
## -1.54814123 -0.45633191 -0.08142269  0.47077942  1.71072162

## `geom_smooth()` using method = 'gam'

## `geom_smooth()` using method = 'loess'

## `geom_smooth()` using method = 'loess'

## `geom_smooth()` using method = 'loess'

Modeling objective difficulty for logical task

## Generalized linear mixed model fit by maximum likelihood (Laplace
##   Approximation) [glmerMod]
##  Family: binomial  ( logit )
## Formula: perdant ~ difficulty + timeNorm + (1 | IDjoueur)
##    Data: DT
## 
##      AIC      BIC   logLik deviance df.resid 
##   1426.5   1447.8   -709.2   1418.5     1504 
## 
## Scaled residuals: 
##     Min      1Q  Median      3Q     Max 
## -5.9435 -0.5021 -0.1156  0.5089  4.9862 
## 
## Random effects:
##  Groups   Name        Variance Std.Dev.
##  IDjoueur (Intercept) 1.577    1.256   
## Number of obs: 1508, groups:  IDjoueur, 52
## 
## Fixed effects:
##             Estimate Std. Error z value Pr(>|z|)    
## (Intercept)  -1.8650     0.2652  -7.033 2.01e-12 ***
## difficulty    5.6686     0.3206  17.680  < 2e-16 ***
## timeNorm     -1.9313     0.2573  -7.507 6.04e-14 ***
## ---
## Signif. codes:  0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
## 
## Correlation of Fixed Effects:
##            (Intr) dffclt
## difficulty -0.496       
## timeNorm   -0.378 -0.227
## The result is correct only if all data used by the model has not changed since model was fitted.
## The result is correct only if all data used by the model has not changed since model was fitted.
## 
##  Logique2   Motrice Sensoriel 
##      1508         0         0 
## [1] "Player levels from ranef:"
##   (Intercept)        
##  Min.   :-1.7902825  
##  1st Qu.:-0.7784485  
##  Median :-0.3355504  
##  Mean   :-0.0003123  
##  3rd Qu.: 0.7369882  
##  Max.   : 3.1275699  
## [1] "Intercept: -1.86 2e-12 ***"
## [1] "Difficulty: 5.67 6e-70 ***"
## [1] "Time: -1.93 6e-14 ***"
## [1] "R2 fixed: 0.38"
## [1] "R2 mixed: 0.58"
## [1] "Cross Val: 0.8"
## [1] "AIC: 1400"
##         0%        25%        50%        75%       100% 
## -3.1275699 -0.7369882  0.3355504  0.7784485  1.7902825

##         0%        25%        50%        75%       100% 
## -3.1275699 -0.7369882  0.3355504  0.7784485  1.7902825

## `geom_smooth()` using method = 'gam'

## `geom_smooth()` using method = 'loess'

## `geom_smooth()` using method = 'loess'

## `geom_smooth()` using method = 'loess'

Influence of Player Profiles

Player profiles

Influence of Player Profiles

Objective level and player profile

Playing video games in general and level for each task

## Warning in cor.test.default(Y, X, method = "kendall"): Cannot compute exact
## p-value with ties

## 
##  Kendall's rank correlation tau
## 
## data:  Y and X
## z = 0.37495, p-value = 0.7077
## alternative hypothesis: true tau is not equal to 0
## sample estimates:
##        tau 
## 0.04294701

## 
##  Kendall's rank correlation tau
## 
## data:  Y and X
## z = -0.91836, p-value = 0.3584
## alternative hypothesis: true tau is not equal to 0
## sample estimates:
##        tau 
## -0.1023712

## 
##  Kendall's rank correlation tau
## 
## data:  Y and X
## z = -0.30458, p-value = 0.7607
## alternative hypothesis: true tau is not equal to 0
## sample estimates:
##         tau 
## -0.03301126

Playing board games in general and level for each task

## Warning in cor.test.default(Y, X, method = "kendall"): Cannot compute exact
## p-value with ties

## 
##  Kendall's rank correlation tau
## 
## data:  Y and X
## z = 0.99227, p-value = 0.3211
## alternative hypothesis: true tau is not equal to 0
## sample estimates:
##    tau 
## 0.1118

## 
##  Kendall's rank correlation tau
## 
## data:  Y and X
## z = -0.31221, p-value = 0.7549
## alternative hypothesis: true tau is not equal to 0
## sample estimates:
##         tau 
## -0.03415935

## 
##  Kendall's rank correlation tau
## 
## data:  Y and X
## z = -0.79975, p-value = 0.4239
## alternative hypothesis: true tau is not equal to 0
## sample estimates:
##         tau 
## -0.08596507

Self efficacy and level for each task

## Warning in cor.test.default(Y, X, method = "kendall"): Cannot compute exact
## p-value with ties
## Warning: Removed 23 rows containing missing values (geom_point).

## 
##  Kendall's rank correlation tau
## 
## data:  Y and X
## z = -0.24953, p-value = 0.8029
## alternative hypothesis: true tau is not equal to 0
## sample estimates:
##         tau 
## -0.03718731
## Warning in cor.test.default(Y, X, method = "kendall"): Cannot compute exact
## p-value with ties

## Warning in cor.test.default(Y, X, method = "kendall"): Removed 23 rows
## containing missing values (geom_point).

## 
##  Kendall's rank correlation tau
## 
## data:  Y and X
## z = 2.4333, p-value = 0.01496
## alternative hypothesis: true tau is not equal to 0
## sample estimates:
##       tau 
## 0.3398094 
## 
## [1] "self.eff.on.level.s 0.34 0.015 *"
## Warning in cor.test.default(Y, X, method = "kendall"): Cannot compute exact
## p-value with ties
## Warning: Removed 26 rows containing missing values (geom_point).

## 
##  Kendall's rank correlation tau
## 
## data:  Y and X
## z = 0.51036, p-value = 0.6098
## alternative hypothesis: true tau is not equal to 0
## sample estimates:
##        tau 
## 0.07281435

Risk aversion and level for each task

## Warning in cor.test.default(Y, X, method = "kendall"): Cannot compute exact
## p-value with ties

## 
##  Kendall's rank correlation tau
## 
## data:  Y and X
## z = 1.3418, p-value = 0.1797
## alternative hypothesis: true tau is not equal to 0
## sample estimates:
##       tau 
## 0.1465938

## 
##  Kendall's rank correlation tau
## 
## data:  Y and X
## z = 2.0586, p-value = 0.03953
## alternative hypothesis: true tau is not equal to 0
## sample estimates:
##       tau 
## 0.2157658 
## 
## [1] "risk.av.on.level.s 0.22 0.04 *"

## 
##  Kendall's rank correlation tau
## 
## data:  Y and X
## z = 1.3062, p-value = 0.1915
## alternative hypothesis: true tau is not equal to 0
## sample estimates:
##       tau 
## 0.1347244

Age and level for each task

## Warning in cor.test.default(Y, X, method = "kendall"): Cannot compute exact
## p-value with ties
## Warning: Removed 1 rows containing missing values (geom_point).

## 
##  Kendall's rank correlation tau
## 
## data:  Y and X
## z = -1.3062, p-value = 0.1915
## alternative hypothesis: true tau is not equal to 0
## sample estimates:
##        tau 
## -0.1372263
## Warning in cor.test.default(Y, X, method = "kendall"): Cannot compute exact
## p-value with ties

## Warning in cor.test.default(Y, X, method = "kendall"): Removed 1 rows
## containing missing values (geom_point).

## 
##  Kendall's rank correlation tau
## 
## data:  Y and X
## z = 1.8963, p-value = 0.05791
## alternative hypothesis: true tau is not equal to 0
## sample estimates:
##       tau 
## 0.1937968 
## 
## [1] "age.on.level.s 0.19 0.058 ."
## Warning: Removed 1 rows containing missing values (geom_point).

## 
##  Kendall's rank correlation tau
## 
## data:  Y and X
## z = 1.2774, p-value = 0.2015
## alternative hypothesis: true tau is not equal to 0
## sample estimates:
##       tau 
## 0.1275074

Sex and level for each task

## Warning in cor.test.default(Y, X, method = "kendall"): Cannot compute exact
## p-value with ties

## 
##  Kendall's rank correlation tau
## 
## data:  Y and X
## z = -2.0369, p-value = 0.04166
## alternative hypothesis: true tau is not equal to 0
## sample estimates:
##        tau 
## -0.2478106 
## 
## [1] "sexe.on.level.m -0.25 0.042 *"

## 
##  Kendall's rank correlation tau
## 
## data:  Y and X
## z = 0.083189, p-value = 0.9337
## alternative hypothesis: true tau is not equal to 0
## sample estimates:
##         tau 
## 0.009799919

## 
##  Kendall's rank correlation tau
## 
## data:  Y and X
## z = -0.26928, p-value = 0.7877
## alternative hypothesis: true tau is not equal to 0
## sample estimates:
##         tau 
## -0.03108211

## 
##  Wilcoxon rank sum test
## 
## data:  B and A
## W = 163, p-value = 0.04192
## alternative hypothesis: true location shift is not equal to 0
## 95 percent confidence interval:
##  -0.73654416 -0.04033621
## sample estimates:
## difference in location 
##             -0.3800085 
## 
## [1] "sexe.on.level.m.2 -0.38 0.042 * mean(A): 0.15 mean(B): -0.27"

## 
##  Wilcoxon rank sum test
## 
## data:  B and A
## W = 276, p-value = 0.9426
## alternative hypothesis: true location shift is not equal to 0
## 95 percent confidence interval:
##  -0.4761356  0.5715623
## sample estimates:
## difference in location 
##             0.01423148

## 
##  Wilcoxon rank sum test
## 
## data:  B and A
## W = 292, p-value = 0.7971
## alternative hypothesis: true location shift is not equal to 0
## 95 percent confidence interval:
##  -0.8271571  0.5994594
## sample estimates:
## difference in location 
##            -0.04046848

Influence of Objective difficulty on Subjective Difficulty

All tasks

## [1] "all"
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties

##     obj.diff.bin delta.obj.subj  n        pval
##  1:      0.03125          0.069 44   0.0032 **
##  2:      0.09375          0.110 53 0.00022 ***
##  3:      0.15625          0.094 54   0.0016 **
##  4:      0.21875          0.110 52 0.00013 ***
##  5:      0.28125          0.097 54   0.0015 **
##  6:      0.34375          0.110 52 3.2e-05 ***
##  7:      0.40625          0.074 53     0.044 *
##  8:      0.46875          0.019 52     0.46 :(
##  9:      0.53125         -0.024 51     0.41 :(
## 10:      0.59375         -0.047 55     0.024 *
## 11:      0.65625         -0.073 52   0.0013 **
## 12:      0.71875         -0.130 54 8.7e-06 ***
## 13:      0.78125         -0.160 53 2.1e-07 ***
## 14:      0.84375         -0.210 52   3e-08 ***
## 15:      0.90625         -0.230 54 7.8e-10 ***
## 16:      0.96875         -0.170 54 3.7e-09 ***
## [1] "mean and sd of nb players per bin"
##     nb        pval
##  1: 44   0.0032 **
##  2: 53 0.00022 ***
##  3: 54   0.0016 **
##  4: 52 0.00013 ***
##  5: 54   0.0015 **
##  6: 52 3.2e-05 ***
##  7: 53     0.044 *
##  8: 52     0.46 :(
##  9: 51     0.41 :(
## 10: 55     0.024 *
## 11: 52   0.0013 **
## 12: 54 8.7e-06 ***
## 13: 53 2.1e-07 ***
## 14: 52   3e-08 ***
## 15: 54 7.8e-10 ***
## 16: 54 3.7e-09 ***
## [1] 52.4
## [1] 2.5

## [1] "good"
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties

## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties

##     obj.diff.bin delta.obj.subj  n        pval
##  1:      0.03125          0.063 29     0.069 .
##  2:      0.09375          0.075 30     0.056 .
##  3:      0.15625          0.077 35     0.14 :(
##  4:      0.21875          0.077 35      0.04 *
##  5:      0.28125          0.072 31     0.047 *
##  6:      0.34375          0.110 31   0.0021 **
##  7:      0.40625          0.073 34     0.037 *
##  8:      0.46875          0.048 32     0.11 :(
##  9:      0.53125          0.024 31     0.55 :(
## 10:      0.59375         -0.044 35     0.27 :(
## 11:      0.65625         -0.056 30     0.11 :(
## 12:      0.71875         -0.170 32 0.00029 ***
## 13:      0.78125         -0.170 32   0.0018 **
## 14:      0.84375         -0.220 22   0.0011 **
## 15:      0.90625         -0.260 20 0.00023 ***
## 16:      0.96875         -0.037 10     0.15 :(
## [1] "mean and sd of nb players per bin"
##     nb        pval
##  1: 29     0.069 .
##  2: 30     0.056 .
##  3: 35     0.14 :(
##  4: 35      0.04 *
##  5: 31     0.047 *
##  6: 31   0.0021 **
##  7: 34     0.037 *
##  8: 32     0.11 :(
##  9: 31     0.55 :(
## 10: 35     0.27 :(
## 11: 30     0.11 :(
## 12: 32 0.00029 ***
## 13: 32   0.0018 **
## 14: 22   0.0011 **
## 15: 20 0.00023 ***
## 16: 10     0.15 :(
## [1] 29.3
## [1] 6.65

## [1] "medium"
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties

## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties

##     obj.diff.bin delta.obj.subj  n        pval
##  1:      0.03125          0.052 27     0.19 :(
##  2:      0.09375          0.110 30   0.0056 **
##  3:      0.15625          0.094 31      0.04 *
##  4:      0.21875          0.120 32     0.011 *
##  5:      0.28125          0.100 32     0.077 .
##  6:      0.34375          0.076 31     0.12 :(
##  7:      0.40625          0.010 35     0.94 :(
##  8:      0.46875         -0.019 34     0.81 :(
##  9:      0.53125         -0.031 34     0.26 :(
## 10:      0.59375         -0.094 32     0.016 *
## 11:      0.65625         -0.160 36 9.2e-05 ***
## 12:      0.71875         -0.130 35   4e-04 ***
## 13:      0.78125         -0.130 35 0.00021 ***
## 14:      0.84375         -0.220 33 7.8e-06 ***
## 15:      0.90625         -0.240 30 6.6e-06 ***
## 16:      0.96875         -0.160 30 4.6e-05 ***
## [1] "mean and sd of nb players per bin"
##     nb        pval
##  1: 27     0.19 :(
##  2: 30   0.0056 **
##  3: 31      0.04 *
##  4: 32     0.011 *
##  5: 32     0.077 .
##  6: 31     0.12 :(
##  7: 35     0.94 :(
##  8: 34     0.81 :(
##  9: 34     0.26 :(
## 10: 32     0.016 *
## 11: 36 9.2e-05 ***
## 12: 35   4e-04 ***
## 13: 35 0.00021 ***
## 14: 33 7.8e-06 ***
## 15: 30 6.6e-06 ***
## 16: 30 4.6e-05 ***
## [1] 32.3
## [1] 2.44

## [1] "bad"
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): requested conf.level not achievable
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties

##     obj.diff.bin delta.obj.subj  n        pval
##  1:      0.03125         0.1400  6     0.14 :(
##  2:      0.09375         0.1100 17     0.12 :(
##  3:      0.15625         0.0940 17     0.041 *
##  4:      0.21875         0.0310 15     0.15 :(
##  5:      0.28125         0.2200 17     0.046 *
##  6:      0.34375         0.1600 15   0.0015 **
##  7:      0.40625         0.0940 18     0.12 :(
##  8:      0.46875         0.0810 17      0.2 :(
##  9:      0.53125        -0.0810 17     0.12 :(
## 10:      0.59375         0.0063 21     0.97 :(
## 11:      0.65625         0.0100 19     0.95 :(
## 12:      0.71875        -0.0940 22     0.068 .
## 13:      0.78125        -0.1100 20     0.031 *
## 14:      0.84375        -0.2400 23 0.00023 ***
## 15:      0.90625        -0.2000 25 0.00027 ***
## 16:      0.96875        -0.2600 24 2.2e-05 ***
## [1] "mean and sd of nb players per bin"
##     nb        pval
##  1:  6     0.14 :(
##  2: 17     0.12 :(
##  3: 17     0.041 *
##  4: 15     0.15 :(
##  5: 17     0.046 *
##  6: 15   0.0015 **
##  7: 18     0.12 :(
##  8: 17      0.2 :(
##  9: 17     0.12 :(
## 10: 21     0.97 :(
## 11: 19     0.95 :(
## 12: 22     0.068 .
## 13: 20     0.031 *
## 14: 23 0.00023 ***
## 15: 25 0.00027 ***
## 16: 24 2.2e-05 ***
## [1] 18.3
## [1] 4.51

Motor task

## [1] "all"
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): requested conf.level not achievable
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): requested conf.level not achievable
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): requested conf.level not achievable
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties

##     obj.diff.bin delta.obj.subj  n    pval
##  1:      0.03125             NA  0      NA
##  2:      0.09375        -0.0440  5 0.78 :(
##  3:      0.15625        -0.0730 19 0.13 :(
##  4:      0.21875         0.0190 35 0.65 :(
##  5:      0.28125         0.0350 40 0.36 :(
##  6:      0.34375         0.0900 40 0.018 *
##  7:      0.40625         0.0540 42 0.19 :(
##  8:      0.46875         0.0560 42 0.098 .
##  9:      0.53125         0.0440 43 0.15 :(
## 10:      0.59375        -0.0100 45 0.91 :(
## 11:      0.65625        -0.0560 44 0.041 *
## 12:      0.71875        -0.0440 43 0.076 .
## 13:      0.78125        -0.0810 38 0.032 *
## 14:      0.84375        -0.1400 23 0.023 *
## 15:      0.90625        -0.0063  7 0.44 :(
## 16:      0.96875        -0.2400  4  0.2 :(
## [1] "mean and sd of nb players per bin"
##     nb    pval
##  1:  5 0.78 :(
##  2: 19 0.13 :(
##  3: 35 0.65 :(
##  4: 40 0.36 :(
##  5: 40 0.018 *
##  6: 42 0.19 :(
##  7: 42 0.098 .
##  8: 43 0.15 :(
##  9: 45 0.91 :(
## 10: 44 0.041 *
## 11: 43 0.076 .
## 12: 38 0.032 *
## 13: 23 0.023 *
## 14:  7 0.44 :(
## 15:  4  0.2 :(
## [1] 31.3
## [1] 15.4
## Warning: Removed 1 rows containing missing values (geom_point).
## Warning: Removed 1 rows containing missing values (geom_errorbar).

## [1] "good"
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): requested conf.level not achievable
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties

##     obj.diff.bin delta.obj.subj  n    pval
##  1:      0.03125             NA  0      NA
##  2:      0.09375        -0.0440  5 0.78 :(
##  3:      0.15625        -0.0730 17 0.057 .
##  4:      0.21875        -0.0190 21 0.61 :(
##  5:      0.28125         0.0190 21 0.42 :(
##  6:      0.34375         0.1100 21 0.023 *
##  7:      0.40625         0.0600 20 0.16 :(
##  8:      0.46875         0.1100 20 0.024 *
##  9:      0.53125         0.1000 19 0.067 .
## 10:      0.59375         0.0880 20 0.18 :(
## 11:      0.65625         0.0051 20    1 :(
## 12:      0.71875        -0.0190 17  0.6 :(
## 13:      0.78125        -0.0560 12 0.25 :(
## 14:      0.84375             NA  0      NA
## 15:      0.90625             NA  0      NA
## 16:      0.96875             NA  0      NA
## [1] "mean and sd of nb players per bin"
##     nb    pval
##  1:  5 0.78 :(
##  2: 17 0.057 .
##  3: 21 0.61 :(
##  4: 21 0.42 :(
##  5: 21 0.023 *
##  6: 20 0.16 :(
##  7: 20 0.024 *
##  8: 19 0.067 .
##  9: 20 0.18 :(
## 10: 20    1 :(
## 11: 17  0.6 :(
## 12: 12 0.25 :(
## [1] 17.8
## [1] 4.77
## Warning: Removed 4 rows containing missing values (geom_point).
## Warning: Removed 4 rows containing missing values (geom_errorbar).

## [1] "medium"
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): requested conf.level not achievable
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): requested conf.level not achievable

##     obj.diff.bin delta.obj.subj  n      pval
##  1:      0.03125             NA  0        NA
##  2:      0.09375             NA  0        NA
##  3:      0.15625          0.290  2      1 :(
##  4:      0.21875          0.069 14   0.29 :(
##  5:      0.28125          0.069 19   0.46 :(
##  6:      0.34375          0.076 19   0.32 :(
##  7:      0.40625          0.020 21   0.83 :(
##  8:      0.46875         -0.019 20   0.93 :(
##  9:      0.53125          0.019 20   0.69 :(
## 10:      0.59375         -0.077 20   0.076 .
## 11:      0.65625         -0.160 20 0.0074 **
## 12:      0.71875         -0.056 21   0.088 .
## 13:      0.78125         -0.081 21   0.21 :(
## 14:      0.84375         -0.160 18   0.029 *
## 15:      0.90625         -0.210  2    0.5 :(
## 16:      0.96875             NA  0        NA
## [1] "mean and sd of nb players per bin"
##     nb      pval
##  1:  2      1 :(
##  2: 14   0.29 :(
##  3: 19   0.46 :(
##  4: 19   0.32 :(
##  5: 21   0.83 :(
##  6: 20   0.93 :(
##  7: 20   0.69 :(
##  8: 20   0.076 .
##  9: 20 0.0074 **
## 10: 21   0.088 .
## 11: 21   0.21 :(
## 12: 18   0.029 *
## 13:  2    0.5 :(
## [1] 16.7
## [1] 6.77
## Warning: Removed 3 rows containing missing values (geom_point).
## Warning: Removed 3 rows containing missing values (geom_errorbar).

## [1] "bad"
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): requested conf.level not achievable
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): requested conf.level not achievable
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): requested conf.level not achievable
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): requested conf.level not achievable
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): requested conf.level not achievable
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): requested conf.level not achievable
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): requested conf.level not achievable
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties

##     obj.diff.bin delta.obj.subj n    pval
##  1:      0.03125             NA 0      NA
##  2:      0.09375             NA 0      NA
##  3:      0.15625             NA 0      NA
##  4:      0.21875             NA 0      NA
##  5:      0.28125             NA 0      NA
##  6:      0.34375             NA 0      NA
##  7:      0.40625             NA 1      NA
##  8:      0.46875         0.1800 2  0.5 :(
##  9:      0.53125        -0.0310 4 0.58 :(
## 10:      0.59375        -0.0270 5 0.78 :(
## 11:      0.65625        -0.0059 4    1 :(
## 12:      0.71875        -0.0520 5 0.62 :(
## 13:      0.78125        -0.0940 5 0.31 :(
## 14:      0.84375        -0.0440 5 0.59 :(
## 15:      0.90625        -0.0062 5    1 :(
## 16:      0.96875        -0.2400 4  0.2 :(
## [1] "mean and sd of nb players per bin"
##    nb    pval
## 1:  2  0.5 :(
## 2:  4 0.58 :(
## 3:  5 0.78 :(
## 4:  4    1 :(
## 5:  5 0.62 :(
## 6:  5 0.31 :(
## 7:  5 0.59 :(
## 8:  5    1 :(
## 9:  4  0.2 :(
## [1] 4.33
## [1] 1
## Warning: Removed 7 rows containing missing values (geom_point).
## Warning: Removed 7 rows containing missing values (geom_errorbar).

Sensory task

## [1] "all"
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties

##     obj.diff.bin delta.obj.subj  n        pval
##  1:      0.03125          0.024 38     0.29 :(
##  2:      0.09375          0.031 47      0.2 :(
##  3:      0.15625          0.044 45     0.47 :(
##  4:      0.21875          0.031 34     0.63 :(
##  5:      0.28125          0.019 32     0.99 :(
##  6:      0.34375         -0.019 28     0.77 :(
##  7:      0.40625         -0.031 32     0.61 :(
##  8:      0.46875         -0.120 31     0.044 *
##  9:      0.53125         -0.180 27   0.0049 **
## 10:      0.59375         -0.190 34 0.00092 ***
## 11:      0.65625         -0.180 33 0.00027 ***
## 12:      0.71875         -0.220 34 5.2e-05 ***
## 13:      0.78125         -0.260 32   9e-06 ***
## 14:      0.84375         -0.270 39 1.6e-05 ***
## 15:      0.90625         -0.210 47 4.8e-08 ***
## 16:      0.96875         -0.094 50 1.2e-06 ***
## [1] "mean and sd of nb players per bin"
##     nb        pval
##  1: 38     0.29 :(
##  2: 47      0.2 :(
##  3: 45     0.47 :(
##  4: 34     0.63 :(
##  5: 32     0.99 :(
##  6: 28     0.77 :(
##  7: 32     0.61 :(
##  8: 31     0.044 *
##  9: 27   0.0049 **
## 10: 34 0.00092 ***
## 11: 33 0.00027 ***
## 12: 34 5.2e-05 ***
## 13: 32   9e-06 ***
## 14: 39 1.6e-05 ***
## 15: 47 4.8e-08 ***
## 16: 50 1.2e-06 ***
## [1] 36.4
## [1] 7.16

## [1] "good"
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): requested conf.level not achievable
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): requested conf.level not achievable
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): requested conf.level not achievable
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): requested conf.level not achievable
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): requested conf.level not achievable
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): requested conf.level not achievable
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): requested conf.level not achievable
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): requested conf.level not achievable
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): requested conf.level not achievable
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties

##     obj.diff.bin delta.obj.subj  n    pval
##  1:      0.03125          0.060 10 0.54 :(
##  2:      0.09375         -0.044  9 0.63 :(
##  3:      0.15625          0.094 10 0.53 :(
##  4:      0.21875         -0.085  6  0.4 :(
##  5:      0.28125          0.060  8 0.44 :(
##  6:      0.34375         -0.220  5 0.19 :(
##  7:      0.40625         -0.110  6 0.29 :(
##  8:      0.46875         -0.220  7 0.15 :(
##  9:      0.53125         -0.073  4 0.88 :(
## 10:      0.59375         -0.250  8 0.058 .
## 11:      0.65625         -0.360  6 0.035 *
## 12:      0.71875         -0.470  7 0.022 *
## 13:      0.78125         -0.310  7 0.051 .
## 14:      0.84375         -0.170  8 0.11 :(
## 15:      0.90625         -0.160  8  0.03 *
## 16:      0.96875         -0.031 10 0.26 :(
## [1] "mean and sd of nb players per bin"
##     nb    pval
##  1: 10 0.54 :(
##  2:  9 0.63 :(
##  3: 10 0.53 :(
##  4:  6  0.4 :(
##  5:  8 0.44 :(
##  6:  5 0.19 :(
##  7:  6 0.29 :(
##  8:  7 0.15 :(
##  9:  4 0.88 :(
## 10:  8 0.058 .
## 11:  6 0.035 *
## 12:  7 0.022 *
## 13:  7 0.051 .
## 14:  8 0.11 :(
## 15:  8  0.03 *
## 16: 10 0.26 :(
## [1] 7.44
## [1] 1.79

## [1] "medium"
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties

## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties

##     obj.diff.bin delta.obj.subj  n      pval
##  1:      0.03125        -0.0099 22   0.79 :(
##  2:      0.09375         0.0190 23   0.82 :(
##  3:      0.15625        -0.0560 20   0.094 .
##  4:      0.21875        -0.0190 16   0.86 :(
##  5:      0.28125        -0.0310 13   0.72 :(
##  6:      0.34375        -0.0440 13    0.4 :(
##  7:      0.40625        -0.0063 16   0.78 :(
##  8:      0.46875        -0.1200 16    0.1 :(
##  9:      0.53125        -0.2300 15   0.027 *
## 10:      0.59375        -0.2900 14 0.0098 **
## 11:      0.65625        -0.1800 17 0.0025 **
## 12:      0.71875        -0.2400 13 0.0031 **
## 13:      0.78125        -0.2600 17 7e-04 ***
## 14:      0.84375        -0.3400 18  0.002 **
## 15:      0.90625        -0.2200 23 1e-04 ***
## 16:      0.96875        -0.0710 23 0.0016 **
## [1] "mean and sd of nb players per bin"
##     nb      pval
##  1: 22   0.79 :(
##  2: 23   0.82 :(
##  3: 20   0.094 .
##  4: 16   0.86 :(
##  5: 13   0.72 :(
##  6: 13    0.4 :(
##  7: 16   0.78 :(
##  8: 16    0.1 :(
##  9: 15   0.027 *
## 10: 14 0.0098 **
## 11: 17 0.0025 **
## 12: 13 0.0031 **
## 13: 17 7e-04 ***
## 14: 18  0.002 **
## 15: 23 1e-04 ***
## 16: 23 0.0016 **
## [1] 17.4
## [1] 3.69

## [1] "bad"
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): requested conf.level not achievable
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): requested conf.level not achievable
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties

##     obj.diff.bin delta.obj.subj  n        pval
##  1:      0.03125         0.1400  6     0.14 :(
##  2:      0.09375         0.1600 15     0.056 .
##  3:      0.15625         0.1200 15     0.049 *
##  4:      0.21875         0.0810 12     0.19 :(
##  5:      0.28125         0.0310 11     0.96 :(
##  6:      0.34375         0.0900 10     0.051 .
##  7:      0.40625         0.0940 10     0.54 :(
##  8:      0.46875        -0.0058  8        1 :(
##  9:      0.53125        -0.2800  8     0.078 .
## 10:      0.59375        -0.0940 12     0.45 :(
## 11:      0.65625        -0.0560 10     0.47 :(
## 12:      0.71875        -0.1200 14     0.15 :(
## 13:      0.78125        -0.1800  8     0.056 .
## 14:      0.84375        -0.2200 13     0.014 *
## 15:      0.90625        -0.2200 16   0.0017 **
## 16:      0.96875        -0.1600 17 0.00065 ***
## [1] "mean and sd of nb players per bin"
##     nb        pval
##  1:  6     0.14 :(
##  2: 15     0.056 .
##  3: 15     0.049 *
##  4: 12     0.19 :(
##  5: 11     0.96 :(
##  6: 10     0.051 .
##  7: 10     0.54 :(
##  8:  8        1 :(
##  9:  8     0.078 .
## 10: 12     0.45 :(
## 11: 10     0.47 :(
## 12: 14     0.15 :(
## 13:  8     0.056 .
## 14: 13     0.014 *
## 15: 16   0.0017 **
## 16: 17 0.00065 ***
## [1] 11.6
## [1] 3.24

Logical task

## [1] "all"
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties

##     obj.diff.bin delta.obj.subj  n        pval
##  1:      0.03125          0.089 35     0.017 *
##  2:      0.09375          0.160 40 5.2e-05 ***
##  3:      0.15625          0.150 40 0.00025 ***
##  4:      0.21875          0.230 42 9.5e-06 ***
##  5:      0.28125          0.220 34 0.00028 ***
##  6:      0.34375          0.160 39 5.5e-05 ***
##  7:      0.40625          0.094 44     0.011 *
##  8:      0.46875          0.031 39     0.024 *
##  9:      0.53125         -0.031 37     0.21 :(
## 10:      0.59375         -0.019 41     0.77 :(
## 11:      0.65625         -0.018 39     0.68 :(
## 12:      0.71875         -0.100 38    0.002 **
## 13:      0.78125         -0.160 43 9.5e-05 ***
## 14:      0.84375         -0.220 41 6.5e-07 ***
## 15:      0.90625         -0.260 40 3.4e-07 ***
## 16:      0.96875         -0.340 25 1.4e-05 ***
## [1] "mean and sd of nb players per bin"
##     nb        pval
##  1: 35     0.017 *
##  2: 40 5.2e-05 ***
##  3: 40 0.00025 ***
##  4: 42 9.5e-06 ***
##  5: 34 0.00028 ***
##  6: 39 5.5e-05 ***
##  7: 44     0.011 *
##  8: 39     0.024 *
##  9: 37     0.21 :(
## 10: 41     0.77 :(
## 11: 39     0.68 :(
## 12: 38    0.002 **
## 13: 43 9.5e-05 ***
## 14: 41 6.5e-07 ***
## 15: 40 3.4e-07 ***
## 16: 25 1.4e-05 ***
## [1] 38.6
## [1] 4.47

## [1] "good"
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties

## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties

##     obj.diff.bin delta.obj.subj  n      pval
##  1:      0.03125          0.050 26   0.071 .
##  2:      0.09375          0.110 26  0.007 **
##  3:      0.15625          0.110 24   0.027 *
##  4:      0.21875          0.200 24 0.0014 **
##  5:      0.28125          0.140 17   0.13 :(
##  6:      0.34375          0.160 21   0.036 *
##  7:      0.40625          0.120 22   0.085 .
##  8:      0.46875          0.031 20   0.15 :(
##  9:      0.53125         -0.031 18   0.27 :(
## 10:      0.59375         -0.094 21   0.19 :(
## 11:      0.65625         -0.056 17   0.57 :(
## 12:      0.71875         -0.120 18   0.026 *
## 13:      0.78125         -0.160 21 0.0081 **
## 14:      0.84375         -0.220 18 0.0018 **
## 15:      0.90625         -0.310 15 0.0024 **
## 16:      0.96875             NA  1        NA
## [1] "mean and sd of nb players per bin"
##     nb      pval
##  1: 26   0.071 .
##  2: 26  0.007 **
##  3: 24   0.027 *
##  4: 24 0.0014 **
##  5: 17   0.13 :(
##  6: 21   0.036 *
##  7: 22   0.085 .
##  8: 20   0.15 :(
##  9: 18   0.27 :(
## 10: 21   0.19 :(
## 11: 17   0.57 :(
## 12: 18   0.026 *
## 13: 21 0.0081 **
## 14: 18 0.0018 **
## 15: 15 0.0024 **
## [1] 20.5
## [1] 3.4
## Warning: Removed 1 rows containing missing values (geom_point).
## Warning: Removed 1 rows containing missing values (geom_errorbar).

## [1] "medium"
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): requested conf.level not achievable
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): requested conf.level not achievable
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties

##     obj.diff.bin delta.obj.subj  n      pval
##  1:      0.03125          0.140  9   0.15 :(
##  2:      0.09375          0.360 12 0.0031 **
##  3:      0.15625          0.340 13 0.0026 **
##  4:      0.21875          0.330 13 0.0031 **
##  5:      0.28125          0.220 10 0.0056 **
##  6:      0.34375          0.160 10 0.0067 **
##  7:      0.40625          0.094 13   0.35 :(
##  8:      0.46875          0.031 11   0.049 *
##  9:      0.53125         -0.031 10   0.75 :(
## 10:      0.59375          0.031 10   0.36 :(
## 11:      0.65625         -0.110 12   0.12 :(
## 12:      0.71875         -0.220 12   0.053 .
## 13:      0.78125         -0.240 13 0.0039 **
## 14:      0.84375         -0.220 13 0.0026 **
## 15:      0.90625         -0.250 13 0.0032 **
## 16:      0.96875         -0.340 12 0.0031 **
## [1] "mean and sd of nb players per bin"
##     nb      pval
##  1:  9   0.15 :(
##  2: 12 0.0031 **
##  3: 13 0.0026 **
##  4: 13 0.0031 **
##  5: 10 0.0056 **
##  6: 10 0.0067 **
##  7: 13   0.35 :(
##  8: 11   0.049 *
##  9: 10   0.75 :(
## 10: 10   0.36 :(
## 11: 12   0.12 :(
## 12: 12   0.053 .
## 13: 13 0.0039 **
## 14: 13 0.0026 **
## 15: 13 0.0032 **
## 16: 12 0.0031 **
## [1] 11.6
## [1] 1.41

## [1] "bad"
## Warning: cannot compute confidence interval when all observations are zero
## or tied
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): requested conf.level not achievable
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): requested conf.level not achievable
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): requested conf.level not achievable
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact p-value with ties
## Warning in wilcox.test.default(subj.diff, mu = obj.diff.bin.cur, conf.int =
## T): cannot compute exact confidence interval with ties

##     obj.diff.bin delta.obj.subj  n      pval
##  1:      0.03125             NA  0        NA
##  2:      0.09375         -0.094  2   0.35 :(
##  3:      0.15625          0.051  3      1 :(
##  4:      0.21875          0.031  5   0.59 :(
##  5:      0.28125          0.450  7   0.034 *
##  6:      0.34375          0.270  8   0.019 *
##  7:      0.40625          0.240  9   0.096 .
##  8:      0.46875          0.120  8   0.53 :(
##  9:      0.53125         -0.031  9   0.55 :(
## 10:      0.59375          0.031 10   0.68 :(
## 11:      0.65625          0.069 10   0.22 :(
## 12:      0.71875         -0.056  8   0.44 :(
## 13:      0.78125         -0.031  9   0.55 :(
## 14:      0.84375         -0.220 10   0.014 *
## 15:      0.90625         -0.240 12 0.0052 **
## 16:      0.96875         -0.350 12 0.0025 **
## [1] "mean and sd of nb players per bin"
##     nb      pval
##  1:  2   0.35 :(
##  2:  3      1 :(
##  3:  5   0.59 :(
##  4:  7   0.034 *
##  5:  8   0.019 *
##  6:  9   0.096 .
##  7:  8   0.53 :(
##  8:  9   0.55 :(
##  9: 10   0.68 :(
## 10: 10   0.22 :(
## 11:  8   0.44 :(
## 12:  9   0.55 :(
## 13: 10   0.014 *
## 14: 12 0.0052 **
## 15: 12 0.0025 **
## [1] 8.13
## [1] 2.9
## Warning: Removed 1 rows containing missing values (geom_point).
## Warning: Removed 2 rows containing missing values (geom_errorbar).

Influence of Playtime on Subjective Difficulty Error

For all groups, motor, sensitive and logical

## 
## Call:
## glm(formula = error.subj.diff.confiance ~ timeNorm + obj.diff, 
##     data = DTM)
## 
## Deviance Residuals: 
##      Min        1Q    Median        3Q       Max  
## -0.75587  -0.18208   0.01722   0.17996   0.67980  
## 
## Coefficients:
##             Estimate Std. Error t value Pr(>|t|)    
## (Intercept)  0.07834    0.02339   3.350  0.00083 ***
## timeNorm     0.01356    0.02393   0.567  0.57104    
## obj.diff    -0.19206    0.03147  -6.103 1.35e-09 ***
## ---
## Signif. codes:  0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
## 
## (Dispersion parameter for gaussian family taken to be 0.05882497)
## 
##     Null deviance: 82.357  on 1362  degrees of freedom
## Residual deviance: 80.002  on 1360  degrees of freedom
## AIC: 11.387
## 
## Number of Fisher Scoring iterations: 2

## 
## Call:
## glm(formula = error.subj.diff.confiance ~ timeNorm + obj.diff, 
##     data = DTS)
## 
## Deviance Residuals: 
##      Min        1Q    Median        3Q       Max  
## -0.81669  -0.17979  -0.04371   0.21432   0.82084  
## 
## Coefficients:
##             Estimate Std. Error t value Pr(>|t|)    
## (Intercept)  0.04155    0.01869   2.223   0.0264 *  
## timeNorm     0.05613    0.02483   2.261   0.0239 *  
## obj.diff    -0.27648    0.01919 -14.407   <2e-16 ***
## ---
## Signif. codes:  0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
## 
## (Dispersion parameter for gaussian family taken to be 0.06951042)
## 
##     Null deviance: 115.46  on 1449  degrees of freedom
## Residual deviance: 100.58  on 1447  degrees of freedom
## AIC: 253.81
## 
## Number of Fisher Scoring iterations: 2

## 
## Call:
## glm(formula = error.subj.diff.confiance ~ timeNorm + obj.diff, 
##     data = DTL)
## 
## Deviance Residuals: 
##      Min        1Q    Median        3Q       Max  
## -0.74305  -0.21400  -0.02148   0.20096   0.71922  
## 
## Coefficients:
##             Estimate Std. Error t value Pr(>|t|)    
## (Intercept)  0.20615    0.02036  10.127  < 2e-16 ***
## timeNorm     0.06739    0.02531   2.662  0.00785 ** 
## obj.diff    -0.51720    0.02162 -23.927  < 2e-16 ***
## ---
## Signif. codes:  0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
## 
## (Dispersion parameter for gaussian family taken to be 0.07044787)
## 
##     Null deviance: 151.98  on 1507  degrees of freedom
## Residual deviance: 106.02  on 1505  degrees of freedom
## AIC: 283.97
## 
## Number of Fisher Scoring iterations: 2
##     time.bin subj.diff.mean obj.diff.mean   error.diff   n    pval
##  1:      1.5      0.5414894     0.5916709 -0.041797918  94 0.16 :(
##  2:      4.5      0.5347518     0.5750233 -0.031870515 141 0.16 :(
##  3:      7.5      0.5085106     0.5313589 -0.018540309 141 0.41 :(
##  4:     10.5      0.5404255     0.5341000  0.017660547 141 0.43 :(
##  5:     13.5      0.5085106     0.5167958 -0.006657395 141 0.77 :(
##  6:     16.5      0.5276596     0.5259445  0.002730878 141  0.9 :(
##  7:     19.5      0.4971631     0.5307814 -0.035624644 141 0.081 .
##  8:     22.5      0.4737589     0.4890926 -0.014471503 141  0.5 :(
##  9:     25.5      0.4758865     0.4723221  0.005341319 141 0.81 :(
## 10:     28.5      0.4574468     0.4526413  0.002547420 141 0.88 :(
##     time   error.diff shapes
##  1:  1.5 -0.041797918     16
##  2:  4.5 -0.031870515     16
##  3:  7.5 -0.018540309     16
##  4: 10.5  0.017660547     16
##  5: 13.5 -0.006657395     16
##  6: 16.5  0.002730878     16
##  7: 19.5 -0.035624644     16
##  8: 22.5 -0.014471503     16
##  9: 25.5  0.005341319     16
## 10: 28.5  0.002547420     16

##     time.bin subj.diff.mean obj.diff.mean  error.diff   n        pval
##  1:      1.5      0.4630000     0.5983941 -0.14651688 100 1.5e-05 ***
##  2:      4.5      0.5066667     0.6266344 -0.10328499 150 1.9e-07 ***
##  3:      7.5      0.4593333     0.5432511 -0.08186935 150 0.00012 ***
##  4:     10.5      0.5133333     0.5865266 -0.06779861 150 0.00047 ***
##  5:     13.5      0.4680000     0.5743050 -0.09318691 150 8.6e-07 ***
##  6:     16.5      0.4200000     0.5144528 -0.09807768 150 1.2e-05 ***
##  7:     19.5      0.4826667     0.5502108 -0.05423641 150   0.0014 **
##  8:     22.5      0.4940000     0.5704597 -0.06446388 150   0.0018 **
##  9:     25.5      0.5406667     0.5923116 -0.03496485 150     0.044 *
## 10:     28.5      0.4966667     0.5699890 -0.06716888 150   0.0014 **
##     time  error.diff shapes
##  1:  1.5 -0.14651688     24
##  2:  4.5 -0.10328499     24
##  3:  7.5 -0.08186935     24
##  4: 10.5 -0.06779861     24
##  5: 13.5 -0.09318691     24
##  6: 16.5 -0.09807768     24
##  7: 19.5 -0.05423641     24
##  8: 22.5 -0.06446388     24
##  9: 25.5 -0.03496485     24
## 10: 28.5 -0.06716888     24

##     time.bin subj.diff.mean obj.diff.mean   error.diff   n        pval
##  1:      1.5      0.4355769     0.5969130 -0.167882862 104 3.2e-06 ***
##  2:      4.5      0.5089744     0.6297636 -0.133755664 156 3.6e-06 ***
##  3:      7.5      0.5102564     0.5544687 -0.055664136 156     0.036 *
##  4:     10.5      0.5224359     0.5229882 -0.002885828 156     0.89 :(
##  5:     13.5      0.5173077     0.5312208 -0.020469229 156     0.44 :(
##  6:     16.5      0.5102564     0.5008164  0.003037161 156     0.91 :(
##  7:     19.5      0.4576923     0.4456698  0.001732470 156     0.95 :(
##  8:     22.5      0.4211538     0.4198655 -0.005254933 156     0.84 :(
##  9:     25.5      0.4576923     0.3963862  0.067659240 156     0.015 *
## 10:     28.5      0.4435897     0.3637653  0.061888038 156     0.014 *
##     time   error.diff shapes
##  1:  1.5 -0.167882862     24
##  2:  4.5 -0.133755664     24
##  3:  7.5 -0.055664136     24
##  4: 10.5 -0.002885828     16
##  5: 13.5 -0.020469229     16
##  6: 16.5  0.003037161     16
##  7: 19.5  0.001732470     16
##  8: 22.5 -0.005254933     16
##  9: 25.5  0.067659240     24
## 10: 28.5  0.061888038     24

For all taks, per group

## 
## Call:
## glm(formula = error.subj.diff.confiance ~ timeNorm + obj.diff, 
##     data = DTAll[niveau.group == "bad"])
## 
## Deviance Residuals: 
##      Min        1Q    Median        3Q       Max  
## -0.80269  -0.21908  -0.01657   0.22716   0.62233  
## 
## Coefficients:
##             Estimate Std. Error t value Pr(>|t|)    
## (Intercept)  0.20886    0.02826    7.39 3.13e-13 ***
## timeNorm     0.09791    0.03013    3.25  0.00119 ** 
## obj.diff    -0.49898    0.02866  -17.41  < 2e-16 ***
## ---
## Signif. codes:  0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
## 
## (Dispersion parameter for gaussian family taken to be 0.06890933)
## 
##     Null deviance: 90.361  on 985  degrees of freedom
## Residual deviance: 67.738  on 983  degrees of freedom
## AIC: 165.63
## 
## Number of Fisher Scoring iterations: 2

## 
## Call:
## glm(formula = error.subj.diff.confiance ~ timeNorm + obj.diff, 
##     data = DTAll[niveau.group == "medium"])
## 
## Deviance Residuals: 
##      Min        1Q    Median        3Q       Max  
## -0.75552  -0.19976  -0.01286   0.22248   0.79147  
## 
## Coefficients:
##             Estimate Std. Error t value Pr(>|t|)    
## (Intercept)  0.12707    0.01973   6.441 1.55e-10 ***
## timeNorm     0.04906    0.02359   2.079   0.0377 *  
## obj.diff    -0.37373    0.02218 -16.848  < 2e-16 ***
## ---
## Signif. codes:  0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
## 
## (Dispersion parameter for gaussian family taken to be 0.07164463)
## 
##     Null deviance: 141.93  on 1681  degrees of freedom
## Residual deviance: 120.29  on 1679  degrees of freedom
## AIC: 344.49
## 
## Number of Fisher Scoring iterations: 2

## 
## Call:
## glm(formula = error.subj.diff.confiance ~ timeNorm + obj.diff, 
##     data = DTAll[niveau.group == "good"])
## 
## Deviance Residuals: 
##      Min        1Q    Median        3Q       Max  
## -0.76442  -0.17146  -0.02305   0.19304   0.73865  
## 
## Coefficients:
##             Estimate Std. Error t value Pr(>|t|)    
## (Intercept)  0.09866    0.01781    5.54 3.52e-08 ***
## timeNorm     0.04031    0.02278    1.77    0.077 .  
## obj.diff    -0.28133    0.02312  -12.17  < 2e-16 ***
## ---
## Signif. codes:  0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
## 
## (Dispersion parameter for gaussian family taken to be 0.06397634)
## 
##     Null deviance: 116.23  on 1652  degrees of freedom
## Residual deviance: 105.56  on 1650  degrees of freedom
## AIC: 151.51
## 
## Number of Fisher Scoring iterations: 2
##     time.bin subj.diff.mean obj.diff.mean  error.diff   n        pval
##  1:      1.5      0.5397059     0.7340431 -0.21468307  68 7.8e-07 ***
##  2:      4.5      0.6009804     0.7680073 -0.19504716 102 1.5e-06 ***
##  3:      7.5      0.6068627     0.7172635 -0.12331065 102 0.00035 ***
##  4:     10.5      0.6500000     0.7133661 -0.06169314 102     0.047 *
##  5:     13.5      0.6176471     0.7329899 -0.12881422 102 4.4e-05 ***
##  6:     16.5      0.5941176     0.6719759 -0.09247099 102   0.0066 **
##  7:     19.5      0.6235294     0.6804832 -0.05435101 102     0.025 *
##  8:     22.5      0.6441176     0.7069167 -0.06745335 102     0.071 .
##  9:     25.5      0.6137255     0.6601957 -0.03386926 102     0.29 :(
## 10:     28.5      0.6176471     0.6549848 -0.02346434 102      0.4 :(
##     time  error.diff shapes
##  1:  1.5 -0.21468307     24
##  2:  4.5 -0.19504716     24
##  3:  7.5 -0.12331065     24
##  4: 10.5 -0.06169314     24
##  5: 13.5 -0.12881422     24
##  6: 16.5 -0.09247099     24
##  7: 19.5 -0.05435101     24
##  8: 22.5 -0.06745335     16
##  9: 25.5 -0.03386926     16
## 10: 28.5 -0.02346434     16

##     time.bin subj.diff.mean obj.diff.mean  error.diff   n        pval
##  1:      1.5      0.4879310     0.6127731 -0.12251390 116   2e-04 ***
##  2:      4.5      0.5304598     0.6508670 -0.11254243 174 2.5e-07 ***
##  3:      7.5      0.4948276     0.5419338 -0.05380585 174     0.014 *
##  4:     10.5      0.5321839     0.5675427 -0.03441678 174     0.14 :(
##  5:     13.5      0.5068966     0.5465351 -0.03684350 174     0.065 .
##  6:     16.5      0.4965517     0.5470742 -0.04954905 174     0.016 *
##  7:     19.5      0.4810345     0.5445443 -0.06521690 174   0.0023 **
##  8:     22.5      0.4362069     0.4955513 -0.06466079 174   0.0039 **
##  9:     25.5      0.5247126     0.5292740 -0.00889516 174     0.66 :(
## 10:     28.5      0.4862069     0.4902848 -0.01668611 174     0.44 :(
##     time  error.diff shapes
##  1:  1.5 -0.12251390     24
##  2:  4.5 -0.11254243     24
##  3:  7.5 -0.05380585     24
##  4: 10.5 -0.03441678     16
##  5: 13.5 -0.03684350     16
##  6: 16.5 -0.04954905     24
##  7: 19.5 -0.06521690     24
##  8: 22.5 -0.06466079     24
##  9: 25.5 -0.00889516     16
## 10: 28.5 -0.01668611     16

##     time.bin subj.diff.mean obj.diff.mean   error.diff   n    pval
##  1:      1.5      0.4315789     0.4959545 -0.054595391 114 0.043 *
##  2:      4.5      0.4514620     0.4779472 -0.027541275 171 0.19 :(
##  3:      7.5      0.4222222     0.4412224 -0.017225361 171 0.41 :(
##  4:     10.5      0.4432749     0.4289910  0.017337272 171  0.4 :(
##  5:     13.5      0.4175439     0.4211832 -0.002596941 171 0.92 :(
##  6:     16.5      0.4093567     0.3843334  0.020514877 171 0.35 :(
##  7:     19.5      0.3894737     0.3668789  0.013668463 171 0.53 :(
##  8:     22.5      0.3801170     0.3608106  0.012409740 171 0.49 :(
##  9:     25.5      0.3842105     0.3382852  0.040771867 171 0.036 *
## 10:     28.5      0.3543860     0.3154980  0.023100373 171 0.26 :(
##     time   error.diff shapes
##  1:  1.5 -0.054595391     24
##  2:  4.5 -0.027541275     16
##  3:  7.5 -0.017225361     16
##  4: 10.5  0.017337272     16
##  5: 13.5 -0.002596941     16
##  6: 16.5  0.020514877     16
##  7: 19.5  0.013668463     16
##  8: 22.5  0.012409740     16
##  9: 25.5  0.040771867     24
## 10: 28.5  0.023100373     16

Per group, motor task

## 
## Call:
## glm(formula = error.subj.diff.confiance ~ timeNorm + obj.diff, 
##     data = DTM[niveau.group == "bad"])
## 
## Deviance Residuals: 
##      Min        1Q    Median        3Q       Max  
## -0.72641  -0.18104   0.07896   0.17901   0.32506  
## 
## Coefficients:
##             Estimate Std. Error t value Pr(>|t|)  
## (Intercept)  0.17441    0.11392   1.531   0.1280  
## timeNorm     0.05973    0.06311   0.946   0.3455  
## obj.diff    -0.34358    0.13212  -2.600   0.0103 *
## ---
## Signif. codes:  0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
## 
## (Dispersion parameter for gaussian family taken to be 0.04409487)
## 
##     Null deviance: 6.6352  on 144  degrees of freedom
## Residual deviance: 6.2615  on 142  degrees of freedom
## AIC: -36.144
## 
## Number of Fisher Scoring iterations: 2
##     time.bin subj.diff.mean obj.diff.mean    error.diff  n    pval
##  1:      1.5      0.7000000     0.8422160 -0.1313282565 10 0.084 .
##  2:      4.5      0.7200000     0.8045511 -0.0795853830 15 0.49 :(
##  3:      7.5      0.6933333     0.7637929 -0.0692528749 15 0.25 :(
##  4:     10.5      0.7200000     0.7894410 -0.0625540247 15 0.36 :(
##  5:     13.5      0.7000000     0.8006171 -0.1084499094 15 0.055 .
##  6:     16.5      0.7200000     0.7661172 -0.0140493178 15  0.8 :(
##  7:     19.5      0.7466667     0.7396280  0.0120888700 15  0.8 :(
##  8:     22.5      0.7333333     0.7489324 -0.0006995672 15    1 :(
##  9:     25.5      0.7533333     0.8163298 -0.0314486693 15  0.6 :(
## 10:     28.5      0.6866667     0.7440259 -0.0101905183 15 0.85 :(
##     time    error.diff shapes
##  1:  1.5 -0.1313282565     16
##  2:  4.5 -0.0795853830     16
##  3:  7.5 -0.0692528749     16
##  4: 10.5 -0.0625540247     16
##  5: 13.5 -0.1084499094     16
##  6: 16.5 -0.0140493178     16
##  7: 19.5  0.0120888700     16
##  8: 22.5 -0.0006995672     16
##  9: 25.5 -0.0314486693     16
## 10: 28.5 -0.0101905183     16

## 
## Call:
## glm(formula = error.subj.diff.confiance ~ timeNorm + obj.diff, 
##     data = DTM[niveau.group == "medium"])
## 
## Deviance Residuals: 
##     Min       1Q   Median       3Q      Max  
## -0.7008  -0.1756   0.0104   0.2007   0.6764  
## 
## Coefficients:
##              Estimate Std. Error t value Pr(>|t|)    
## (Intercept)  0.129171   0.042821   3.017  0.00266 ** 
## timeNorm    -0.001606   0.039220  -0.041  0.96736    
## obj.diff    -0.312573   0.058219  -5.369 1.13e-07 ***
## ---
## Signif. codes:  0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
## 
## (Dispersion parameter for gaussian family taken to be 0.06994394)
## 
##     Null deviance: 44.480  on 608  degrees of freedom
## Residual deviance: 42.386  on 606  degrees of freedom
## AIC: 113.28
## 
## Number of Fisher Scoring iterations: 2
##     time.bin subj.diff.mean obj.diff.mean  error.diff  n      pval
##  1:      1.5      0.5214286     0.6226413 -0.09427256 42   0.054 .
##  2:      4.5      0.5476190     0.6192837 -0.06506441 63   0.076 .
##  3:      7.5      0.5222222     0.5488374 -0.02194671 63   0.54 :(
##  4:     10.5      0.5269841     0.5633358 -0.01792603 63   0.63 :(
##  5:     13.5      0.5365079     0.5457213 -0.00376177 63   0.93 :(
##  6:     16.5      0.5285714     0.5497442 -0.02446941 63    0.5 :(
##  7:     19.5      0.4698413     0.5571074 -0.09226440 63 0.0066 **
##  8:     22.5      0.4412698     0.5026155 -0.06648564 63   0.067 .
##  9:     25.5      0.4777778     0.4906858 -0.01544805 63   0.67 :(
## 10:     28.5      0.4777778     0.4965908 -0.02412439 63   0.42 :(
##     time  error.diff shapes
##  1:  1.5 -0.09427256     16
##  2:  4.5 -0.06506441     16
##  3:  7.5 -0.02194671     16
##  4: 10.5 -0.01792603     16
##  5: 13.5 -0.00376177     16
##  6: 16.5 -0.02446941     16
##  7: 19.5 -0.09226440     24
##  8: 22.5 -0.06648564     16
##  9: 25.5 -0.01544805     16
## 10: 28.5 -0.02412439     16

## 
## Call:
## glm(formula = error.subj.diff.confiance ~ timeNorm + obj.diff, 
##     data = DTM[niveau.group == "good"])
## 
## Deviance Residuals: 
##      Min        1Q    Median        3Q       Max  
## -0.66104  -0.16469  -0.00053   0.17110   0.56752  
## 
## Coefficients:
##             Estimate Std. Error t value Pr(>|t|)
## (Intercept) 0.003495   0.031165   0.112    0.911
## timeNorm    0.030048   0.032813   0.916    0.360
## obj.diff    0.014011   0.048027   0.292    0.771
## 
## (Dispersion parameter for gaussian family taken to be 0.04854566)
## 
##     Null deviance: 29.460  on 608  degrees of freedom
## Residual deviance: 29.419  on 606  degrees of freedom
## AIC: -109.12
## 
## Number of Fisher Scoring iterations: 2
##     time.bin subj.diff.mean obj.diff.mean   error.diff  n    pval
##  1:      1.5      0.5238095     0.5010468  0.029289622 42 0.44 :(
##  2:      4.5      0.4777778     0.4761135  0.006623743 63 0.82 :(
##  3:      7.5      0.4507937     0.4585390 -0.004803129 63  0.9 :(
##  4:     10.5      0.5111111     0.4440686  0.079755085 63 0.014 *
##  5:     13.5      0.4349206     0.4202938  0.019074304 63 0.57 :(
##  6:     16.5      0.4809524     0.4449609  0.036494116 63 0.21 :(
##  7:     19.5      0.4650794     0.4547299  0.003733181 63 0.89 :(
##  8:     22.5      0.4444444     0.4137030  0.029021770 63 0.27 :(
##  9:     25.5      0.4079365     0.3720518  0.034671878 63 0.19 :(
## 10:     28.5      0.3825397     0.3393145  0.035270385 63 0.18 :(
##     time   error.diff shapes
##  1:  1.5  0.029289622     16
##  2:  4.5  0.006623743     16
##  3:  7.5 -0.004803129     16
##  4: 10.5  0.079755085     24
##  5: 13.5  0.019074304     16
##  6: 16.5  0.036494116     16
##  7: 19.5  0.003733181     16
##  8: 22.5  0.029021770     16
##  9: 25.5  0.034671878     16
## 10: 28.5  0.035270385     16

Per group, sensory task

## 
## Call:
## glm(formula = error.subj.diff.confiance ~ timeNorm + obj.diff, 
##     data = DTS[niveau.group == "bad"])
## 
## Deviance Residuals: 
##      Min        1Q    Median        3Q       Max  
## -0.80432  -0.24487   0.03094   0.22202   0.66330  
## 
## Coefficients:
##             Estimate Std. Error t value Pr(>|t|)    
## (Intercept)  0.16140    0.03396   4.752 2.65e-06 ***
## timeNorm     0.06109    0.04211   1.451    0.147    
## obj.diff    -0.41400    0.03424 -12.093  < 2e-16 ***
## ---
## Signif. codes:  0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
## 
## (Dispersion parameter for gaussian family taken to be 0.06794817)
## 
##     Null deviance: 43.432  on 492  degrees of freedom
## Residual deviance: 33.295  on 490  degrees of freedom
## AIC: 78.382
## 
## Number of Fisher Scoring iterations: 2
##     time.bin subj.diff.mean obj.diff.mean   error.diff  n      pval
##  1:      1.5      0.4941176     0.6085665 -0.152531227 34   0.023 *
##  2:      4.5      0.5901961     0.6991256 -0.109272912 51   0.014 *
##  3:      7.5      0.5509804     0.6345944 -0.086824486 51   0.047 *
##  4:     10.5      0.6294118     0.6841657 -0.045698412 51    0.2 :(
##  5:     13.5      0.5862745     0.7016356 -0.104623019 51 0.0038 **
##  6:     16.5      0.4862745     0.5649381 -0.103417724 51   0.047 *
##  7:     19.5      0.5549020     0.6164159 -0.066346952 51   0.13 :(
##  8:     22.5      0.6823529     0.6986966 -0.009077272 51   0.87 :(
##  9:     25.5      0.5607843     0.6090612 -0.040361670 51   0.34 :(
## 10:     28.5      0.5647059     0.6315531 -0.044306199 51   0.24 :(
##     time   error.diff shapes
##  1:  1.5 -0.152531227     24
##  2:  4.5 -0.109272912     24
##  3:  7.5 -0.086824486     24
##  4: 10.5 -0.045698412     16
##  5: 13.5 -0.104623019     24
##  6: 16.5 -0.103417724     24
##  7: 19.5 -0.066346952     16
##  8: 22.5 -0.009077272     16
##  9: 25.5 -0.040361670     16
## 10: 28.5 -0.044306199     16

## 
## Call:
## glm(formula = error.subj.diff.confiance ~ timeNorm + obj.diff, 
##     data = DTS[niveau.group == "medium"])
## 
## Deviance Residuals: 
##      Min        1Q    Median        3Q       Max  
## -0.78276  -0.14627  -0.03905   0.20244   0.85170  
## 
## Coefficients:
##              Estimate Std. Error t value Pr(>|t|)    
## (Intercept) -0.009082   0.027303  -0.333   0.7395    
## timeNorm     0.069800   0.036421   1.916   0.0557 .  
## obj.diff    -0.219530   0.028070  -7.821 2.07e-14 ***
## ---
## Signif. codes:  0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
## 
## (Dispersion parameter for gaussian family taken to be 0.06876727)
## 
##     Null deviance: 50.178  on 666  degrees of freedom
## Residual deviance: 45.661  on 664  degrees of freedom
## AIC: 112.28
## 
## Number of Fisher Scoring iterations: 2
##     time.bin subj.diff.mean obj.diff.mean  error.diff  n        pval
##  1:      1.5      0.4760870     0.6175788 -0.14309639 46    0.005 **
##  2:      4.5      0.4855072     0.6174250 -0.09986975 69 2.4e-05 ***
##  3:      7.5      0.4318841     0.5232784 -0.08691513 69   0.0016 **
##  4:     10.5      0.4855072     0.5903642 -0.09297913 69   0.0011 **
##  5:     13.5      0.4318841     0.5222148 -0.07481678 69   0.0043 **
##  6:     16.5      0.4188406     0.5318649 -0.09106967 69   8e-04 ***
##  7:     19.5      0.4898551     0.5551161 -0.03697742 69     0.11 :(
##  8:     22.5      0.3724638     0.5014754 -0.11542346 69 4.5e-05 ***
##  9:     25.5      0.5681159     0.6179125 -0.03211492 69     0.13 :(
## 10:     28.5      0.5101449     0.5606582 -0.06758506 69     0.025 *
##     time  error.diff shapes
##  1:  1.5 -0.14309639     24
##  2:  4.5 -0.09986975     24
##  3:  7.5 -0.08691513     24
##  4: 10.5 -0.09297913     24
##  5: 13.5 -0.07481678     24
##  6: 16.5 -0.09106967     24
##  7: 19.5 -0.03697742     16
##  8: 22.5 -0.11542346     24
##  9: 25.5 -0.03211492     16
## 10: 28.5 -0.06758506     24

## 
## Call:
## glm(formula = error.subj.diff.confiance ~ timeNorm + obj.diff, 
##     data = DTS[niveau.group == "good"])
## 
## Deviance Residuals: 
##      Min        1Q    Median        3Q       Max  
## -0.68522  -0.14623  -0.04545   0.23850   0.78294  
## 
## Coefficients:
##             Estimate Std. Error t value Pr(>|t|)    
## (Intercept)  0.02288    0.03832   0.597    0.551    
## timeNorm     0.01439    0.05454   0.264    0.792    
## obj.diff    -0.25548    0.04226  -6.045 4.64e-09 ***
## ---
## Signif. codes:  0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
## 
## (Dispersion parameter for gaussian family taken to be 0.06709326)
## 
##     Null deviance: 21.712  on 289  degrees of freedom
## Residual deviance: 19.256  on 287  degrees of freedom
## AIC: 44.484
## 
## Number of Fisher Scoring iterations: 2
##     time.bin subj.diff.mean obj.diff.mean  error.diff  n      pval
##  1:      1.5      0.3800000     0.5369763 -0.14197624 20   0.019 *
##  2:      4.5      0.4133333     0.5245812 -0.09092401 30   0.033 *
##  3:      7.5      0.3666667     0.4339046 -0.05124555 30   0.15 :(
##  4:     10.5      0.3800000     0.4117135 -0.04766386 30   0.24 :(
##  5:     13.5      0.3500000     0.4776505 -0.11804203 30   0.016 *
##  6:     16.5      0.3100000     0.3885799 -0.09028234 30   0.033 *
##  7:     19.5      0.3433333     0.4263799 -0.07108670 30    0.02 *
##  8:     22.5      0.4533333     0.5111209 -0.02705620 30   0.57 :(
##  9:     25.5      0.4433333     0.5049552 -0.03322130 30   0.36 :(
## 10:     28.5      0.3500000     0.4867908 -0.11483232 30 0.0093 **
##     time  error.diff shapes
##  1:  1.5 -0.14197624     24
##  2:  4.5 -0.09092401     24
##  3:  7.5 -0.05124555     16
##  4: 10.5 -0.04766386     16
##  5: 13.5 -0.11804203     24
##  6: 16.5 -0.09028234     24
##  7: 19.5 -0.07108670     24
##  8: 22.5 -0.02705620     16
##  9: 25.5 -0.03322130     16
## 10: 28.5 -0.11483232     24

Per group, logical task

## 
## Call:
## glm(formula = error.subj.diff.confiance ~ timeNorm + obj.diff, 
##     data = DTL[niveau.group == "bad"])
## 
## Deviance Residuals: 
##      Min        1Q    Median        3Q       Max  
## -0.71273  -0.14992  -0.08786   0.27418   0.49321  
## 
## Coefficients:
##             Estimate Std. Error t value Pr(>|t|)    
## (Intercept)  0.42032    0.06182   6.799 4.66e-11 ***
## timeNorm     0.10387    0.05362   1.937   0.0535 .  
## obj.diff    -0.79834    0.06101 -13.085  < 2e-16 ***
## ---
## Signif. codes:  0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
## 
## (Dispersion parameter for gaussian family taken to be 0.07238212)
## 
##     Null deviance: 39.631  on 347  degrees of freedom
## Residual deviance: 24.972  on 345  degrees of freedom
## AIC: 78.791
## 
## Number of Fisher Scoring iterations: 2
##     time.bin subj.diff.mean obj.diff.mean   error.diff  n        pval
##  1:      1.5      0.5375000     0.8667296 -0.336223194 24 8.3e-07 ***
##  2:      4.5      0.5666667     0.8503630 -0.300166011 36 8.1e-06 ***
##  3:      7.5      0.6500000     0.8149910 -0.191351305 36   0.0067 **
##  4:     10.5      0.6500000     0.7230354 -0.075959113 36     0.21 :(
##  5:     13.5      0.6277778     0.7492306 -0.168314679 36     0.043 *
##  6:     16.5      0.6944444     0.7843873 -0.103751078 36      0.1 :(
##  7:     19.5      0.6694444     0.7466016 -0.071855795 36     0.088 .
##  8:     22.5      0.5527778     0.7010553 -0.155156364 36     0.017 *
##  9:     25.5      0.6305556     0.6675804 -0.011808735 36     0.88 :(
## 10:     28.5      0.6638889     0.6510792  0.008180296 36     0.87 :(
##     time   error.diff shapes
##  1:  1.5 -0.336223194     24
##  2:  4.5 -0.300166011     24
##  3:  7.5 -0.191351305     24
##  4: 10.5 -0.075959113     16
##  5: 13.5 -0.168314679     24
##  6: 16.5 -0.103751078     16
##  7: 19.5 -0.071855795     16
##  8: 22.5 -0.155156364     24
##  9: 25.5 -0.011808735     16
## 10: 28.5  0.008180296     16
## Warning: Removed 2 rows containing missing values (geom_errorbar).

## 
## Call:
## glm(formula = error.subj.diff.confiance ~ timeNorm + obj.diff, 
##     data = DTL[niveau.group == "medium"])
## 
## Deviance Residuals: 
##      Min        1Q    Median        3Q       Max  
## -0.64791  -0.12252  -0.01687   0.08254   0.56550  
## 
## Coefficients:
##              Estimate Std. Error t value Pr(>|t|)    
## (Intercept)  0.412353   0.037259  11.067   <2e-16 ***
## timeNorm    -0.004306   0.043597  -0.099    0.921    
## obj.diff    -0.758214   0.039233 -19.326   <2e-16 ***
## ---
## Signif. codes:  0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
## 
## (Dispersion parameter for gaussian family taken to be 0.0555671)
## 
##     Null deviance: 44.748  on 405  degrees of freedom
## Residual deviance: 22.394  on 403  degrees of freedom
## AIC: -16.24
## 
## Number of Fisher Scoring iterations: 2
##     time.bin subj.diff.mean obj.diff.mean   error.diff  n        pval
##  1:      1.5      0.4571429     0.5900756 -0.128331981 28     0.074 .
##  2:      4.5      0.5785714     0.7531825 -0.175486570 42 0.00038 ***
##  3:      7.5      0.5571429     0.5622264 -0.024952320 42     0.62 :(
##  4:     10.5      0.6166667     0.5363606  0.074535928 42     0.26 :(
##  5:     13.5      0.5857143     0.5877105 -0.004272844 42     0.89 :(
##  6:     16.5      0.5761905     0.5680560 -0.005940807 42     0.91 :(
##  7:     19.5      0.4833333     0.5083317 -0.026640701 42     0.56 :(
##  8:     22.5      0.5333333     0.4752222  0.063331693 42      0.3 :(
##  9:     25.5      0.5238095     0.4415357  0.079086797 42     0.13 :(
## 10:     28.5      0.4595238     0.3652122  0.102052174 42     0.089 .
##     time   error.diff shapes
##  1:  1.5 -0.128331981     16
##  2:  4.5 -0.175486570     24
##  3:  7.5 -0.024952320     16
##  4: 10.5  0.074535928     16
##  5: 13.5 -0.004272844     16
##  6: 16.5 -0.005940807     16
##  7: 19.5 -0.026640701     16
##  8: 22.5  0.063331693     16
##  9: 25.5  0.079086797     16
## 10: 28.5  0.102052174     16

## 
## Call:
## glm(formula = error.subj.diff.confiance ~ timeNorm + obj.diff, 
##     data = DTL[niveau.group == "good"])
## 
## Deviance Residuals: 
##      Min        1Q    Median        3Q       Max  
## -0.65768  -0.19763  -0.04035   0.21009   0.72371  
## 
## Coefficients:
##             Estimate Std. Error t value Pr(>|t|)    
## (Intercept)  0.12696    0.02761   4.598    5e-06 ***
## timeNorm     0.06463    0.03613   1.789    0.074 .  
## obj.diff    -0.37517    0.03533 -10.619   <2e-16 ***
## ---
## Signif. codes:  0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
## 
## (Dispersion parameter for gaussian family taken to be 0.06922719)
## 
##     Null deviance: 61.766  on 753  degrees of freedom
## Residual deviance: 51.990  on 751  degrees of freedom
## AIC: 131.3
## 
## Number of Fisher Scoring iterations: 2
##     time.bin subj.diff.mean obj.diff.mean   error.diff  n    pval
##  1:      1.5      0.3769231     0.4760639 -0.102437219 52 0.042 *
##  2:      4.5      0.4448718     0.4614922 -0.027759149 78 0.44 :(
##  3:      7.5      0.4205128     0.4300504 -0.017443018 78 0.62 :(
##  4:     10.5      0.4128205     0.4234581 -0.008719531 78 0.81 :(
##  5:     13.5      0.4294872     0.4001833  0.034200208 78 0.44 :(
##  6:     16.5      0.3897436     0.3337317  0.052227726 78 0.13 :(
##  7:     19.5      0.3461538     0.2730373  0.067476620 78 0.073 .
##  8:     22.5      0.3000000     0.2602781  0.014479723 78 0.59 :(
##  9:     25.5      0.3423077     0.2469083  0.092629303 78 0.011 *
## 10:     28.5      0.3333333     0.2303798  0.075981671 78 0.048 *
##     time   error.diff shapes
##  1:  1.5 -0.102437219     24
##  2:  4.5 -0.027759149     16
##  3:  7.5 -0.017443018     16
##  4: 10.5 -0.008719531     16
##  5: 13.5  0.034200208     16
##  6: 16.5  0.052227726     16
##  7: 19.5  0.067476620     16
##  8: 22.5  0.014479723     16
##  9: 25.5  0.092629303     24
## 10: 28.5  0.075981671     24